• Title of article

    Adaptive estimation of vector autoregressive models with time-varying variance: Application to testing linear causality in mean

  • Author/Authors

    Patilea، نويسنده , , Valentin and Raïssi، نويسنده , , Hamdi، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2012
  • Pages
    22
  • From page
    2891
  • To page
    2912
  • Abstract
    Linear vector autoregressive (VAR) models where the innovations could be unconditionally heteroscedastic are considered. The volatility structure is deterministic and quite general, including breaks or trending variances as special cases. In this framework we propose ordinary least squares (OLS), generalized least squares (GLS) and adaptive least squares (ALS) procedures. The GLS estimator requires the knowledge of the time-varying variance structure while in the ALS approach the unknown variance is estimated by kernel smoothing with the outer product of the OLS residual vectors. Different bandwidths for the different cells of the time-varying variance matrix are also allowed. We derive the asymptotic distribution of the proposed estimators for the VAR model coefficients and compare their properties. In particular we show that the ALS estimator is asymptotically equivalent to the infeasible GLS estimator. This asymptotic equivalence is obtained uniformly with respect to the bandwidth(s) in a given range and hence justifies data-driven bandwidth rules. Using these results we build Wald tests for the linear Granger causality in mean which are adapted to VAR processes driven by errors with a nonstationary volatility. It is also shown that the commonly used standard Wald test for the linear Granger causality in mean is potentially unreliable in our framework (incorrect level and lower asymptotic power). Monte Carlo experiments illustrate the use of the different estimation approaches for the analysis of VAR models with time-varying variance innovations.
  • Keywords
    Linear causality in mean , Bahadur relative efficiency , VAR model , Heteroscedastic errors , Adaptive Least Squares , Ordinary least squares , Kernel smoothing
  • Journal title
    Journal of Statistical Planning and Inference
  • Serial Year
    2012
  • Journal title
    Journal of Statistical Planning and Inference
  • Record number

    2222121